3D Automatic Segmentation of Brain Tumor Based on Deep Neural Network and Multimodal MRI Images.

Zhuliang Qian, Lifeng Xie, Yisheng Xu
Author Information
  1. Zhuliang Qian: Department of Imaging, Xiaoshan District Hospital of Traditional Chinese Medicine, Hangzhou 311201, Zhejiang, China.
  2. Lifeng Xie: Department of Imaging, Xiaoshan District Hospital of Traditional Chinese Medicine, Hangzhou 311201, Zhejiang, China.
  3. Yisheng Xu: Department of Imaging, Xiaoshan District Hospital of Traditional Chinese Medicine, Hangzhou 311201, Zhejiang, China. ORCID

Abstract

Brain tumor segmentation is an important content in medical image processing, and it is also a very common research in medicine. Due to the development of modern technology, it is very valuable to use deep learning (DL) and multimodal MRI images to study brain tumor segmentation. In order to solve the problems of low efficiency and low accuracy of brain tumor segmentation, this paper proposes DL to conduct research on multimodal MRI image segmentation, aiming to make accurate diagnosis and treatment for doctors. In addition, this paper constructs an automatic diagnosis system for brain tumors, uses GLCM and discrete wavelet transform (DWT) to extract features from MRI images, and then uses a convolutional neural network (CNN) for final diagnosis; finally, through four. The comparison of the results between the two algorithms proves that the CNN algorithm has the better processing power and higher efficiency.

References

  1. Brain Struct Funct. 2016 Jan;221(1):287-300 [PMID: 25287513]
  2. IEEE Trans Med Imaging. 2016 May;35(5):1240-1251 [PMID: 26960222]
  3. IEEE J Biomed Health Inform. 2016 Sep;20(5):1232-9 [PMID: 27164612]
  4. IEEE Trans Biomed Eng. 2017 Mar;64(3):569-579 [PMID: 27187939]

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